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Nonuniform State Space Reconstruction for Multivariate Chaotic Time Series

机译:多元混沌时间序列的非均匀状态空间重构

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摘要

State space reconstruction is the foundation of chaotic system modeling. Selection of reconstructed variables is essential to the analysis and prediction of multivariate chaotic time series. As most existing state space reconstruction theorems deal with univariate time series, we have presented a novel nonuniform state space reconstruction method using information criterion for multivariate chaotic time series. We derived a new criterion based on low dimensional approximation of joint mutual information for time delay selection, which can be solved efficiently through the use of an intelligent optimization algorithm with low computation complexity. The embedding dimension is determined by conditional entropy, after which the reconstructed variables have relatively strong independence and low redundancy. The scheme, which integrates nonuniform embedding and feature selection, results in better reconstructions for multivariate chaotic systems. Moreover, the proposed nonuniform state space reconstruction method shows good performance in forecasting benchmark and actual multivariate chaotic time series.
机译:状态空间重构是混沌系统建模的基础。重构变量的选择对于多元混沌时间序列的分析和预测至关重要。由于大多数现有的状态空间重构定理都涉及单变量时间序列,因此我们提出了一种基于信息准则的多元混沌时间序列的新型非均匀状态空间重构方法。我们基于联合互信息的低维近似为时延选择导出了一个新的准则,该准则可以通过使用具有低计算复杂度的智能优化算法来有效地解决。嵌入维数由条件熵确定,此后重构变量具有相对较强的独立性和较低的冗余度。该方案集成了非均匀嵌入和特征选择,可为多元混沌系统提供更好的重构。此外,所提出的非均匀状态空间重构方法在预测基准和实际的多元混沌时间序列方面表现出良好的性能。

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